Analysis of Skin disease techniques using Smart Phone and Digital Camera Identification of Skin Disease

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Abstract

Skin diseases are a serious health issue that affects a large number of individuals. In recent years, with the fast advancement of technology and the use of various data mining approaches, dermatological predictive classification has become increasingly predictive and accurate. It is more help to dermatologist to identify the disease, As a result, the development of machine learning approaches capable of efficiently. The purpose of this study is making an application of identification skin disease images by using the machines learning method, Support Vector Machine (SVM), and KNN techniques. The image processes and machine learning is performed early detection of skin diseases. The aim of this study is determined the classification of skin diseases in humans. Each skin disease has symptoms. It has five skin diseases such as Acne, Psoriasis, Wrath, Psoriasis, and Ulcer. We have collected 314 skin disease images from the government of hospital, Aurangabad with the help of mobile camera and Sony HD camera. Gaussian Filter is used for image pre-processing. The segmentation method is used for K-Means Clustering and the feature extraction method are used for feature extraction. We have used Haar feature, color feature, FCM, OS-FCM, GLCM and LBF features for classifications. Based on the result, the SVM is given 92% accuracy for haar feature, FCM and OS-FCM. and KNN classifier, K-Means are given 89% and 89% accuracy using mobile phone camera dataset. The SVM, KNN and K-Means are given 91%, 87% and 89% accuracy respectively using Sony HD camera dataset. SVM is given good result in both dataset.
基于智能手机和数码相机的皮肤病识别技术分析
皮肤病是影响许多人的严重健康问题。近年来,随着技术的快速进步和各种数据挖掘方法的使用,皮肤病学预测分类的预测性和准确性越来越高。它更有助于皮肤科医生识别疾病,因此,机器学习方法的发展能够有效地解决问题。本研究的目的是利用机器学习方法、支持向量机(SVM)和KNN技术在皮肤病图像识别中的应用。通过图像处理和机器学习进行皮肤疾病的早期检测。本研究的目的是确定人类皮肤病的分类。每种皮肤病都有症状。它有五种皮肤病,如痤疮、牛皮癣、愤怒、牛皮癣和溃疡。我们在移动相机和索尼高清相机的帮助下,从奥兰加巴德政府医院收集了314张皮肤病图像。采用高斯滤波器对图像进行预处理。k均值聚类采用分割方法,特征提取采用特征提取方法。我们使用Haar特征、颜色特征、FCM、OS-FCM、GLCM和LBF特征进行分类。在此基础上,支持向量机对haar特征、FCM和OS-FCM的准确率达到92%。使用手机相机数据集,K-Means的准确率分别为89%和89%。使用索尼高清相机数据集,SVM、KNN和K-Means的准确率分别为91%、87%和89%。支持向量机在两个数据集上都得到了很好的结果。
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